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GIS-based landslide susceptibility mapping using numerical risk factor bivariate model and its ensemble with linear multivariate regression and boosted regression tree algorithms 被引量:14
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作者 Alireza ARABAMERI Biswajeet PRADHAN +2 位作者 Khalil REZAE Masoud SOHRABI Zahra KALANTARI 《Journal of Mountain Science》 SCIE CSCD 2019年第3期595-618,共24页
In this study, a novel approach of the landslide numerical risk factor(LNRF) bivariate model was used in ensemble with linear multivariate regression(LMR) and boosted regression tree(BRT) models, coupled with radar re... In this study, a novel approach of the landslide numerical risk factor(LNRF) bivariate model was used in ensemble with linear multivariate regression(LMR) and boosted regression tree(BRT) models, coupled with radar remote sensing data and geographic information system(GIS), for landslide susceptibility mapping(LSM) in the Gorganroud watershed, Iran. Fifteen topographic, hydrological, geological and environmental conditioning factors and a landslide inventory(70%, or 298 landslides) were used in mapping. Phased array-type L-band synthetic aperture radar data were used to extract topographic parameters. Coefficients of tolerance and variance inflation factor were used to determine the coherence among conditioning factors. Data for the landslide inventory map were obtained from various resources, such as Iranian Landslide Working Party(ILWP), Forestry, Rangeland and Watershed Organisation(FRWO), extensive field surveys, interpretation of aerial photos and satellite images, and radar data. Of the total data, 30% were used to validate LSMs, using area under the curve(AUC), frequency ratio(FR) and seed cell area index(SCAI).Normalised difference vegetation index, land use/land cover and slope degree in BRT model elevation, rainfall and distance from stream were found to be important factors and were given the highest weightage in modelling. Validation results using AUC showed that the ensemble LNRF-BRT and LNRFLMR models(AUC = 0.912(91.2%) and 0.907(90.7%), respectively) had high predictive accuracy than the LNRF model alone(AUC = 0.855(85.5%)). The FR and SCAI analyses showed that all models divided the parameter classes with high precision. Overall, our novel approach of combining multivariate and machine learning methods with bivariate models, radar remote sensing data and GIS proved to be a powerful tool for landslide susceptibility mapping. 展开更多
关键词 LANDSLIDE susceptibility GIS Remote sensing BIVARIATE MODEL MULTIVARIATE MODEL Machine learning MODEL
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环境遥感
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作者 Wolter Arnberg 甘敏敏 《AMBIO-人类环境杂志》 2003年第8期494-494,共1页
土地利用和土地覆盖住不断变化着。这种变化影响着景观及其生物多样性。随着社会对这个问题危险性意识的增长,向专业人员、政策制定者和广大公众提供信息越来越重要。遥感技术已发展30年了,尽管它具有很大的潜力,但是任社会上的应用... 土地利用和土地覆盖住不断变化着。这种变化影响着景观及其生物多样性。随着社会对这个问题危险性意识的增长,向专业人员、政策制定者和广大公众提供信息越来越重要。遥感技术已发展30年了,尽管它具有很大的潜力,但是任社会上的应用仍然有限。 展开更多
关键词 土地利用 环境监测 生物多样性 森林 野生动物 环境管理
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